Degenerate Feedback Loops in Recommender Systems

Ray Jiang, S. Chiappa, Tor Lattimore, A. György, Pushmeet Kohli
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引用次数: 146

Abstract

Machine learning is used extensively in recommender systems deployed in products. The decisions made by these systems can influence user beliefs and preferences which in turn affect the feedback the learning system receives - thus creating a feedback loop. This phenomenon can give rise to the so-called "echo chambers" or "filter bubbles" that have user and societal implications. In this paper, we provide a novel theoretical analysis that examines both the role of user dynamics and the behavior of recommender systems, disentangling the echo chamber from the filter bubble effect. In addition, we offer practical solutions to slow down system degeneracy. Our study contributes toward understanding and developing solutions to commonly cited issues in the complex temporal scenario, an area that is still largely unexplored.
推荐系统中的退化反馈循环
机器学习被广泛应用于产品中的推荐系统。这些系统做出的决定会影响用户的信念和偏好,进而影响学习系统接收到的反馈——从而形成一个反馈循环。这种现象可能会产生所谓的“回音室”或“过滤气泡”,对用户和社会都有影响。在本文中,我们提供了一种新的理论分析,该理论分析了用户动态和推荐系统行为的作用,将回音室与过滤气泡效应分离开来。此外,我们提供了实际的解决方案,以减缓系统退化。我们的研究有助于理解和开发复杂时间情景中常见问题的解决方案,这是一个很大程度上尚未探索的领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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